The discriminating capacity (i.e. ability to correctly classify presences and absences) of species distribution models (SDMs) is commonly evaluated with metrics such as the area under the receiving operating characteristic curve (AUC), the Kappa statistic and the true skill statistic (TSS). AUC and Kappa have been repeatedly criticized, but TSS has fared relatively well since its introduction, mainly because it has been considered as independent of prevalence. In addition, discrimination metrics have been contested because they should be calculated on presence-absence data, but are often used on presence-only or presence-background data. Here, we investigate TSS and an alternative set of metricssimilarity indices, also known as F-measures. ...
Modelling species distributions with presence data from atlases, museum collections and databases i...
Aim: Species distribution information is essential under increasing global changes, and models can b...
Species distribution models that only require presence data provide potentially inaccurate results d...
International audienceThe discriminating capacity (i.e. ability to correctly classify presences and ...
It has long been a concern that performance measures of species distribution models react to attribu...
1.The use of species distribution models to understand and predict species’ distributions necessitat...
Prevalence (the presence/absence ratio in the training data) is commonly thought to influence the re...
[Aim]: When faced with dichotomous events, such as the presence or absence of a species, discriminat...
Model evaluation metrics play a critical role in the selection of adequate species distribution mode...
For species distribution models, species frequency is termed prevalence and prevalence in samples sh...
Predicting the occurrence probability of species is intrinsically dependent on the quality of the tr...
International audience1. Models for predicting the distribution of organisms from environmental data...
Abstract: Species distribution models (SDMs) are empirical models relating species occurrence to env...
Aim The proportion of sampled sites where a species is present is known as prevalence. Empirical stu...
Modelling species distributions with presence data from atlases, museum collections and databases i...
Aim: Species distribution information is essential under increasing global changes, and models can b...
Species distribution models that only require presence data provide potentially inaccurate results d...
International audienceThe discriminating capacity (i.e. ability to correctly classify presences and ...
It has long been a concern that performance measures of species distribution models react to attribu...
1.The use of species distribution models to understand and predict species’ distributions necessitat...
Prevalence (the presence/absence ratio in the training data) is commonly thought to influence the re...
[Aim]: When faced with dichotomous events, such as the presence or absence of a species, discriminat...
Model evaluation metrics play a critical role in the selection of adequate species distribution mode...
For species distribution models, species frequency is termed prevalence and prevalence in samples sh...
Predicting the occurrence probability of species is intrinsically dependent on the quality of the tr...
International audience1. Models for predicting the distribution of organisms from environmental data...
Abstract: Species distribution models (SDMs) are empirical models relating species occurrence to env...
Aim The proportion of sampled sites where a species is present is known as prevalence. Empirical stu...
Modelling species distributions with presence data from atlases, museum collections and databases i...
Aim: Species distribution information is essential under increasing global changes, and models can b...
Species distribution models that only require presence data provide potentially inaccurate results d...